Shoji Moriya


2025

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DSLCMM: A Multimodal Human-Machine Dialogue Corpus Built through Competitions
Ryuichiro Higashinaka | Tetsuro Takahashi | Shinya Iizuka | Sota Horiuchi | Michimasa Inaba | Zhiyang Qi | Yuta Sasaki | Kotaro Funakoshi | Shoji Moriya | Shiki Sato | Takashi Minato | Kurima Sakai | Tomo Funayama | Masato Komuro | Hiroyuki Nishikawa | Ryosaku Makino | Hirofumi Kikuchi | Mayumi Usami
Proceedings of the 15th International Workshop on Spoken Dialogue Systems Technology

A corpus of dialogues between multimodal systems and humans is indispensable for the development and improvement of such systems. However, there is a shortage of human-machine multimodal dialogue datasets, which hinders the widespread deployment of these systems in society. To address this issue, we construct a Japanese multimodal human-machine dialogue corpus, DSLCMM, by collecting and organizing data from the Dialogue System Live Competitions (DSLCs). This paper details the procedure for constructing the corpus and presents our analysis of the relationship between various dialogue features and evaluation scores provided by users.

2024

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A Multimodal Dialogue System to Lead Consensus Building with Emotion-Displaying
Shinnosuke Nozue | Yuto Nakano | Shoji Moriya | Tomoki Ariyama | Kazuma Kokuta | Suchun Xie | Kai Sato | Shusaku Sone | Ryohei Kamei | Reina Akama | Yuichiroh Matsubayashi | Keisuke Sakaguchi
Proceedings of the 25th Annual Meeting of the Special Interest Group on Discourse and Dialogue

The evolution of large language models has enabled fluent dialogue, increasing interest in the coexistence of humans and avatars. An essential aspect of achieving this coexistence involves developing sophisticated dialogue systems that can influence user behavior. In this background, we propose an effective multimodal dialogue system designed to promote consensus building with humans. Our system employs a slot-filling strategy to guide discussions and attempts to influence users with suggestions through emotional expression and intent conveyance via its avatar. These innovations have resulted in our system achieving the highest performance in a competition evaluating consensus building between humans and dialogue systems. We hope that our research will promote further discussion on the development of dialogue systems that enhance consensus building in human collaboration.

2023

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TohokuNLP at SemEval-2023 Task 5: Clickbait Spoiling via Simple Seq2Seq Generation and Ensembling
Hiroto Kurita | Ikumi Ito | Hiroaki Funayama | Shota Sasaki | Shoji Moriya | Ye Mengyu | Kazuma Kokuta | Ryujin Hatakeyama | Shusaku Sone | Kentaro Inui
Proceedings of the 17th International Workshop on Semantic Evaluation (SemEval-2023)

This paper describes our system submitted to SemEval-2023 Task 5: Clickbait Spoiling. We work on spoiler generation of the subtask 2 and develop a system which comprises two parts: 1) simple seq2seq spoiler generation and 2) post-hoc model ensembling. Using this simple method, we address the challenge of generating multipart spoiler. In the test set, our submitted system outperformed the baseline by a large margin (approximately 10 points above on the BLEU score) for mixed types of spoilers. We also found that our system successfully handled the challenge of the multipart spoiler, confirming the effectiveness of our approach.